PolyModel for Hedge Funds' Portfolio Construction Using Machine Learning
The domain of hedge fund investments is undergoing significant transformation, influenced by the rapid expansion of data availability and the advancement of analytical technologies. This study explores the enhancement of hedge fund investment performance through the integration of machine learning t...
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Zusammenfassung: | The domain of hedge fund investments is undergoing significant
transformation, influenced by the rapid expansion of data availability and the
advancement of analytical technologies. This study explores the enhancement of
hedge fund investment performance through the integration of machine learning
techniques, the application of PolyModel feature selection, and the analysis of
fund size. We address three critical questions: (1) the effect of machine
learning on trading performance, (2) the role of PolyModel feature selection in
fund selection and performance, and (3) the comparative reliability of larger
versus smaller funds.
Our findings offer compelling insights. We observe that while machine
learning techniques enhance cumulative returns, they also increase annual
volatility, indicating variability in performance. PolyModel feature selection
proves to be a robust strategy, with approaches that utilize a comprehensive
set of features for fund selection outperforming more selective methodologies.
Notably, Long-Term Stability (LTS) effectively manages portfolio volatility
while delivering favorable returns. Contrary to popular belief, our results
suggest that larger funds do not consistently yield better investment outcomes,
challenging the assumption of their inherent reliability.
This research highlights the transformative impact of data-driven approaches
in the hedge fund investment arena and provides valuable implications for
investors and asset managers. By leveraging machine learning and PolyModel
feature selection, investors can enhance portfolio optimization and reassess
the dependability of larger funds, leading to more informed investment
strategies. |
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DOI: | 10.48550/arxiv.2412.11019 |